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ENSEMBLE CLASSIFIER AND ITS APPLICATION TO IMAGE-BASED MICR CHARACTER RECOGNITION

机译:封装分类器及其在基于图像的字符识别中的应用

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Image-based Magnetic Ink Character Recognition (MICR) is a challenging research topic in the automatic check processing. In this paper, a novel ensemble classifier system, which consists of three Artificial Neural Networks (ANNs) and a gating network, is used to congregate the recognition results in order to increase the recognition rate and reliability at the same time. A fast and efficient scheme of the genetic algorithm used to evolve the weights of the gating network is presented. A new bending line detection algorithm for the check image processing is proposed. The position information of the detected lines is utilized to connect the broken lines caused by the bending line problem and to enhance segmentation accuracy. The experiments demonstrated that the proposed ensemble classifier system not only increased the overall recognition performance, but also introduced a rejection strategy to suppress the misrecognition rate.
机译:基于图像的磁性墨水字符识别(MICR)是自动检查处理中一个具有挑战性的研究主题。本文采用了一个新颖的集成分类器系统,该系统由三个人工神经网络(ANN)和一个门控网络组成,用于对识别结果进行汇总,以同时提高识别率和可靠性。提出了一种用于进化门控网络权重的遗传算法的快速有效方案。提出了一种用于检查图像处理的弯曲线检测新算法。利用检测到的线的位置信息来连接由弯曲线问题引起的虚线并提高分割精度。实验表明,提出的集成分类器系统不仅提高了整体识别性能,而且提出了一种抑制误识别率的拒绝策略。

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